Analysis of the aperiodic component in the mouse neocortex
Date
2021
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Tartu Ülikool
Abstract
Neuronal activity that underlies the conscious and unconscious aspects of animal life can
manifest and be measured in different ways. The understanding of what is happening in
the brain is a paramount objective of neuroscience. With the increasing availability of
data and better analysis tools, we are seeing this objective becoming closer to our reach.
The electrical activity recorded from the brain can display oscillations at specific
frequencies in conjunction with physiological or behavioral states. These periodic
components have been associated to animal (including human) behavior and even used
to diagnose physiological abnormalities. In more recent years, the notion that only
periodic components provide a view into brain activity has been somewhat challenged.
Brain signals can also show changes in wider ranges of the spectrum, not linked to any
periodic process. This aperiodic component has been already associated to changes in
age, but recent studies have begun to show how they could provide a window to more
physiological phenomena occurring in the brain.
In this work we investigate how two different types of physiological changes are
reflected by changes in the aperiodic component. To that end we analysed data recorded
in the primary sensory and motor cortex of mice. To analyze the aperiodic component
changes, we used a novel tool that extracts it from a signal, separating it from the periodic
components. In our first study, we observed that sensory stimulation correlates with an
increase of the aperiodic component in the sensory cortex. In our second analysis we
focused on changes occurring under the effect of a receptor blocking drug applied to the
primary sensory cortex. Within the area affected by the drug, we observed a decrease in
the aperiodic offset and a decrease in correlation of the aperiodic components extracted
at different layers. In two out of three mice we also observed this change in the primary
motor cortex.
These results help to develop our understanding of the mechanisms underlying the
aperiodic contributions to the brain’s recorded activity. At the same time, they could
potentially enable the use of metrics based on aperiodic activity as a diagnostic tool for
mental conditions in health and disease.
Description
Keywords
Computational Neuroscience, Signal processing